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Dynamic Ride-sharing Systems: a Case Study in Metro Atlanta Niels Agatz Joint work with Alan Erera, Martin Savelsbergh, Xing Wang ARC February 26, Atlanta
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Motivation Observations Congestion is a major issue in urban areas around the world Congestion leads to Loss of productivity Wasted fuel Pollution Private car occupancies are low Average of 1.8 for leisure trips Average of 1.1 for commuting trips
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Motivation Opportunity Effective use of empty car seats can Reduce congestion Reduce fuel consumption Reduce pollution Increase productivity Enabling technology exists GPS-enabled mobile devices Mobile-to-mobile communication Route guidance technology Dynamic Ride-Sharing
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Outline Introduction to dynamic ride-sharing A dynamic ride-share setting Solving the problem Simulation Metro Atlanta Simulation Results
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1.Announcement of trips 2.Matching of drivers and riders 3.Execution of identified trips 4.Sharing of trip costs Dynamic ride-sharing: basics Assumption: if no trip is identified, drivers and riders use their own car to reach destination
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Dynamic ride-sharing: features Dynamic: established on short-notice Non-recurring trips: different from carpooling Automated matching: different from online notice- boards Independent drivers: different from taxis Cost-sharing: variable trip related expenses Prearranged: different from spontaneous, casual ride-sharing
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Dynamic ride-sharing: providers IPhone applications: Carticipate (Aug. ‘08) Avego (Dec. ‘08) Google Android applications: Piggyback (May ‘08) Web-based: Zebigo, PickupPal, Nuride, Rideshark, Ridecell, Goloco, Zimride, …, etc.
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What is in it for participants? Save costs by sharing fuel expenses and tolls Save time through use of HOV-lanes Save the planet
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What is in it for providers? Private: take a cut of the participant’s cost savings Public (society): decrease external costs of transportation: emissions, pollution, and traffic congestion
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Objectives Participants: ↓ travel costs Private ride-share provider: ↓ total travel costs ↑ cut Society: ↓ pollution and traffic congestion Objectives are aligned: ↓ system-wide vehicle miles, win-win-win
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Ride-share Setting Trip Announcement: Trips between origin - destination Role: driver, rider or flexible Participant wants to save $ At most: a single driver - a single rider No Transfers or multi-passenger trips
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Announcement: Time Information Announcement time Departure time Latest arrival time direct travel timeflexibility time window for matching Lead-time Earliest Latest Relative to duration of trip?
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Round Trips Most trips in practice are round trips Announcement round trips: jointly or separately? Rider may want assurance return ride before departure Return trip alternatives?
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System Dynamics New announcements continuously enter and leave the system! People leave because ride-share was found Announcement expired
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Effectively Handling Dynamics Run optimization at specific time intervals; After a given number of announcements. Optimization Engine: Input: trip announcements Output: driver-rider matches Commit tentative match as-late-as-possible! shortly before latest departure of ride-share
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Effectively Dealing with Dynamics
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Run 1 Expired
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Effectively Dealing with Dynamics Run 2 Ride-share finalized
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Simulation Environment Based on traffic model data from ARC
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Ride-share Characteristics Focus: Home-based Work, SOV Ride-share participation rate (bc 2%) Driver – Rider ratio (bc 1:1) Announcement lead-time (abs) (bc 30 min) Time flexibility (abs) (bc 20 min)
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Announcement Generator Randomly generate trip announcements based on o-d trip data: 2024 Traffic Analysis Zones (TAZs) # work-related round trips per day: 2.96 million ~ 87% single occupancy trips # O-D pairs: 2.90 million max # trips per O-D pair: 881 min # trips per O-D pair: 0.01
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Generate time information: 1.Home-work Draw latest departure: 7:30am, sd. 1h Calculate: earl. departure, lat. arrival, announcement 2.Work-home Draw time at work: 8 hour, sd. 30 min Add time at work to announcement times Announcement Generator cont’d
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Ride-share Scenarios SEPAR: separate announcements for round trip, no guaranteed ride back JOINT: joint announcement for round trip, guaranteed ride back (not necessarily with same driver!) BOUND: all daily trips known upfront (no dynamics)
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Simulation Results SUCCESS OUTWARD (riders) SUCCESS RETURN (riders) ∆ VHM∆ TRIPS SEPAR76.4%96.7%-28.7%-37.6% JOINT68.2%100%-21.3%-33.7% BOUND75.0%100%-24.0%-37.6% -8.2 ! -0.6% of total trips
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Sensitivity Increase/ decrease participation rate More + better matches!
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Sensitivity cont’d Flexible roles → success rate ↑ ↑ time flexibility → success rate ↑ response time ↓ → success rate ↓ ↑ lead-time → success rate ↑
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Cost savings Total daily system-wide savings: $53,000 20% cut Ride-share provider: $10,600 Viable business model? Avg. savings pp matched: $1.4 (20%) Enough incentive to participate? Input: $0.55 per mile (AAA 2007)
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Environmental benefits System-wide vehicle-miles: -105,519 Vehicle Trips: -15,400 Emissions Hydrocarbons: -650 lbs/ day CO: -4000 lbs / day Oxides of Nitrogen: -323 lbs/ day
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When can we find ride-shares? Density is good
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What if we offer awards? Subsidize ride-share by a fixed award per match No award Award = $0.55 Award = $1.10 $9,500$19,000 +8%+2.5%
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Under development Study system performance over time Key observations: New participants try ride-sharing Dissatisfied participants may stop announcing trips Inspired by innovation diffusion models: Inflow new users dependent on size of user pool! Outflow depends on cumulative success rate
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Outlook More realistic travel time settings Time-dependent travel times Behavioral modeling Match acceptance Cancelations No-shows Choices …
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Thank You
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